Center for Systems and Community Design, The City University of New York Graduate School of Public Health & Health Policy, New York, New York.
CUNY Institute for Demographic Research, The City University of New York, New York, New York.
JAMA Netw Open. 2020 May 1;3(5):e204289. doi: 10.1001/jamanetworkopen.2020.4289.
The prevalence of extreme obesity continues to increase among adults in the US, yet there is an absence of subnational estimates and geographic description of extreme obesity. This shortcoming prevents a thorough understanding of the geographic distribution of extreme obesity, which in turn limits the ability of public health agencies and policy makers to target areas with a known higher prevalence.
To use small-area estimation to create county-level estimates of extreme obesity in the US and apply spatial methods to identify clusters of high and low prevalence.
DESIGN, SETTING, AND PARTICIPANTS: A cross-sectional analysis was conducted using multilevel regression and poststratification with data from the 2012 Behavioral Risk Factor Surveillance System and the US Census Bureau to create prevalence estimates of county-level extreme obesity (body mass index ≥40 [calculated as weight in kilograms divided by height in meters squared]). Data were included on adults (aged ≥18 years) living in the contiguous US. Analysis was performed from June 4 to December 28, 2018.
Multilevel logistic regression models estimated the probability of extreme obesity based on individual-level and area-level characteristics. Census counts were multiplied by these probabilities and summed by county to create county-level prevalence estimates. Moran index values were calculated to assess spatial autocorrelation and identify spatial clusters of hot and cold spots. Estimates of moderate obesity were obtained for comparison.
Overall, the weighted prevalence of extreme obesity was 4.0% (95% CI, 3.9%-4.1%) and the prevalence of moderate obesity was 23.7% (95% CI, 23.4%-23.9%). County-level prevalence of extreme obesity ranged from 1.3% (95% CI, 1.3%-1.3%) to 15.7% (95% CI, 15.3%-16.0%). The Pearson correlation coefficient comparing model-predicted estimates with direct estimates was 0.81 (P < .001). The Moran index I score was 0.35 (P < .001), indicating spatial clustering. Significant clusters of high and low prevalence were identified. Hot spots indicating clustering of high prevalence of extreme obesity in several regions, including the Mississippi Delta region and the Southeast, were identified, as well as clusters of low prevalence in the Rocky Mountain region and the Northeast.
Substantial geographic variation was identified in the prevalence of extreme obesity; there was considerable county-level variation even in states generally known as having high or low prevalence of obesity. The results suggest that extreme obesity prevalence demonstrates spatial dependence and clustering and may support the need for substate analysis and benefit of disaggregation of obesity by group. Findings from this study can inform local and national policies seeking to identify populations most at risk from very high body mass index.
美国成年人中极端肥胖的患病率持续上升,但缺乏州以下估计数和极端肥胖的地理描述。这一缺陷阻碍了对极端肥胖地理分布的全面了解,从而限制了公共卫生机构和政策制定者以已知高患病率地区为目标的能力。
使用小区域估计来创建美国县级极端肥胖的估计值,并应用空间方法来确定高患病率和低患病率的聚类。
设计、地点和参与者:使用多水平回归和事后分层,对 2012 年行为风险因素监测系统和美国人口普查局的数据进行横断面分析,以创建县级极端肥胖(体重指数≥40[体重以千克为单位除以身高的平方米])的患病率估计值。包括居住在美国大陆的成年人(年龄≥18 岁)的数据。分析于 2018 年 6 月 4 日至 12 月 28 日进行。
多水平逻辑回归模型根据个体水平和区域水平的特征估计极端肥胖的概率。将人口普查计数乘以这些概率,并按县相加,以创建县级患病率估计值。计算莫兰指数值以评估空间自相关并确定热点和冷点的空间聚类。获得了中度肥胖的估计值进行比较。
总体而言,极端肥胖的加权患病率为 4.0%(95%置信区间,4.0%-4.1%),中度肥胖的患病率为 23.7%(95%置信区间,23.4%-23.9%)。县级极端肥胖的患病率范围为 1.3%(95%置信区间,1.3%-1.3%)至 15.7%(95%置信区间,15.3%-16.0%)。模型预测估计值与直接估计值之间的皮尔逊相关系数为 0.81(P < .001)。莫兰指数 I 得分为 0.35(P < .001),表明存在空间聚类。确定了高患病率和低患病率的显著聚类。确定了几个地区,包括密西西比三角洲地区和东南部的极端肥胖高患病率聚类热点,以及落基山地区和东北部的低患病率聚类。
在极端肥胖的患病率方面存在显著的地理差异;即使在一般被认为肥胖率高或低的州,县一级的差异也很大。结果表明,极端肥胖的患病率表现出空间依赖性和聚类性,这可能支持对州以下地区进行分析和按群组细分肥胖的必要性。本研究的结果可以为寻求确定体重指数非常高的人群最易受影响的地方和国家政策提供信息。